2018
DOI: 10.1016/j.tics.2017.11.002
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Large-Scale Gradients in Human Cortical Organization

Abstract: Recent advances in mapping cortical areas in the human brain provide a basis for investigating the significance of their spatial arrangement. Here we describe a dominant gradient in cortical features that spans between sensorimotor and transmodal areas. We propose that this gradient constitutes a core organizing axis of the human cerebral cortex, and describe an intrinsic coordinate system on its basis. Studying the cortex with respect to these intrinsic dimensions can inform our understanding of how the spect… Show more

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Cited by 689 publications
(682 citation statements)
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References 63 publications
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“…The studies described above provide convergent evidence that hierarchical gradients of microcircuit properties shape large-scale specialization of cortical function (90). One circuit mechanism for temporal processing hierarchies (97-99) is regional gradients in local synaptic properties (61,104), consistent with microanatomical measurements of dendritic spines on pyramidal neurons (46,61,105,106).…”
Section: Importance Of Cortical Heterogeneitymentioning
confidence: 90%
See 1 more Smart Citation
“…The studies described above provide convergent evidence that hierarchical gradients of microcircuit properties shape large-scale specialization of cortical function (90). One circuit mechanism for temporal processing hierarchies (97-99) is regional gradients in local synaptic properties (61,104), consistent with microanatomical measurements of dendritic spines on pyramidal neurons (46,61,105,106).…”
Section: Importance Of Cortical Heterogeneitymentioning
confidence: 90%
“…Yet cortical microcircuitry varies across cortex in large-scale gradients (88-90); indeed, early areal parcellations were based on regional variation in cytoarchitecture and myeloarchitecture (91). Clinical neuroimaging effects show regional specificity (e.g., differential alterations in association vs. sensory cortical networks) (35,92-94).…”
Section: Importance Of Cortical Heterogeneitymentioning
confidence: 99%
“…It has been sparsely but robustly documented that some anatomical brain connections have nonuniform spatial arrangements, for example, with the presence of gradients, which cannot be easily subdivided into areas. Connection topography, which consists of considering brain connectivity as a continuous field, has been proposed as an alternative way to study brain connectivity, complementary to the classic concept of network (Huntenburg, Bazin, & Margulies, ; Jbabdi, Sotiropoulos, & Behrens, ). It would be of considerable interest to explore the possibility to translate the concept of connectivity‐based structure–function relationship into such framework, all the more that connection topography appears to be a powerful approach to highlight inter‐individual variability (Tavor et al, ).…”
Section: Discussionmentioning
confidence: 99%
“…In addition to leveraging surface-based processing and multimodal co-registration techniques, we harnessed a novel analysis reference frame determined by the putative neocortical hierarchy. Initially formulated in nonhuman primates (Mesulam, 1998), the hierarchy follows a "sensory-fugal" gradient from low-level cortices involved in interactions with the external world to higher-order transmodal areas involved in self-generated, abstract cognition (Buckner & Krienen, 2013;Huntenburg, Bazin, & Margulies, 2018;Margulies et al, 2016;Paquola et al, 2019;Hong et al, 2019). Recent application of unsupervised compression techniques applied to cortico-cortical functional connectivity data recapitulated a similar gradient in humans (Margulies et al, 2016).…”
Section: Introductionmentioning
confidence: 96%